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Source channel @olddriverGDstudy · Post #29 · Mar 17

搜索使用说明 #搜索指南 因为电报软件对中文搜索支持不好,大队特别对队内资源搜索进行了整理汇集,使用方法说明如下: 1.1 原理: 电报对中文搜索支持不佳,汉字只有在前后含有asic码字符的前提下可以被正确搜索出,如 _广州修车大队_ (“_”指代空格)、(广州修车大队);等形式可以搜索“广州修车大队”搜索出相关信息;搜索“广州”等未被asic码间隔的汉字无法正确显示。 为正确搜索,在编制频道资源时,对重要信息可以采取Hashtag的形式已方便搜索,即以"#"字符开头,接汉字,以“空格字符”结尾的形式,点击一个hashtag即可快速定位该频道或聊天群内所有相同标签,建议所有管理在编辑重要资料包括ls信息、广播台、学习频道时正确使用hashtag。 !!注意标签不要随意编写,要参考搜索指南中有的标签类型!! 1.2 JS资源定位: JS目前支持 Hasgtag(#K老师)、数字标签(#GZ003)的搜索方式,在对应榜单和报告区中试用上述方式均可查找到JS的相关信息。 使用举例:在“广州公开榜”或“广州修车大队”的搜索栏中输入 #K老师 或 #GZ003,均可定位到K老师资料页;在报告区的搜索栏中输入#K老师 或 #GZ003,均可定位到K老师的验证报告。这两者是快速了解JS基本信息和评价的便捷办法。 1.3 标签查找 公榜榜单目前均支持标签查找,可以快速定位某种类型或地区的所有JS,目前仅支持Hashtag查找,目前常用标签解释如下: 地区标签: 一定要使用一级标签,例如 #天河区(注意不要有错别字) #颜值: 不解释 #服务: 评价中92、95的,有场子出身花式水平的,均会归入此类; #大胸: 不解释,一般D以上归入此类; #长腿: 不解释,一般168以上归入此类; #身材: 不解释,较为宽松; #嫩妹: 22岁以下或者长相很嫩的,白小纯的,loli系的,cos系的归入此类; #熟女: 30岁以上风韵犹存的,归入此类; #特服: 提供3p、3t、wt、字母等特殊服务的JS归入此类。 使用举例:在红榜的搜索栏中输入 #长腿,可以快速查看“莉贝伦”等8位长腿JS。 类型标签评价目前非常主观,有不妥之处请队内私信 JackJack 或其他管理人员修改。 1.4 资料查找 目前学习频道中试用hashtag来快速定位资料,目前使用的标签有如下几种: #安全CJ#素质CJ#卫生CJ #搜索指南 #大队玩法 #语录#秀哥语录 #技巧#知识

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26 similar posts found

Search: #artificial_intelligence

当前筛选 #artificial_intelligence清除筛选
djangoproject

@djangoproject · Post #251 · 02/02/2017, 06:06 PM

https://www.analyticsvidhya.com/blog/2016/08/deep-learning-path/?utm_content=bufferd56c5&utm_medium=social&utm_source=linkedin.com&utm_campaign=buffer #Deep_Learning, a prominent topic in #Artificial_Intelligence domain, has been in the spotlight for quite some time now. It is especially known for its breakthroughs in fields like Computer Vision and Game playing (Alpha GO), surpassing human ability. Since the last survey, there has been a drastic increase in the trends. (click here to check out the survey) Here is what Google trends shows us:

DSR Corporation News

@dsr_news · Post #252 · 12/13/2022, 10:28 AM

🙋🏻‍♂️ Знакомьтесь, это Бруно Оливейра, VP of Engineering в Noema, дочерней компании DSR Corporation. Noema занимается созданием решений с использованием технологий AI и Computer Vision. 👨🏻‍💻 Именно интерес к CV привел Бруно в DSR. 💬 — Не так просто найти компанию, которая специализируется на создании CV/AI продуктов для использования в реальной жизни. Это именно то, чем мне нравится заниматься, — рассказывает Бруно. #dsr_team#doingsoftwareright#noema#computer_vision#artificial_intelligence

GitHub Trends

@githubtrending · Post #14732 · 05/21/2025, 12:30 PM

#csharp#ai#artificial_intelligence#llm#openai#sdk Semantic Kernel is a tool that helps developers build and manage AI systems easily. It supports multiple programming languages like C#, Python, and Java, making it versatile for different projects. This tool allows you to connect your AI models to various services and databases, which helps in automating tasks and making decisions based on user inputs. It's especially useful for businesses because it's reliable, secure, and can handle complex workflows. By using Semantic Kernel, developers can create intelligent AI agents that can interact with users and perform tasks efficiently. https://github.com/microsoft/semantic-kernel

GitHub Trends

@githubtrending · Post #15068 · 08/17/2025, 11:30 AM

#python#artificial_intelligence#cybersecurity#generative_ai#llm#pentesting Cybersecurity AI (CAI) is an open-source, lightweight framework that helps you build AI agents to find and fix security vulnerabilities efficiently. It supports many AI models and tools, works on multiple operating systems, and allows human control during tasks. CAI automates complex security testing steps like scanning, exploiting, and validating bugs, making bug bounty hunting easier and faster. It also logs detailed traces for better analysis and supports teamwork among AI agents. Using CAI can boost your cybersecurity skills, save time, and improve your ability to protect systems from attacks by combining AI power with your expertise. https://github.com/aliasrobotics/cai

GitHub Trends

@githubtrending · Post #15278 · 11/07/2025, 02:00 PM

#python#agents#artificial_intelligence#cybersecurity#generative_ai#llm#penetration_testing Strix is a free, open-source tool that uses AI agents to automatically find and fix security problems in your apps by acting like real hackers—running your code, hunting for vulnerabilities, and proving they’re real by actually exploiting them, not just guessing[1][2]. It works fast, gives clear reports, and can even suggest fixes or create pull requests to help you secure your code quickly. You can run it on your own computer, in your development pipeline, or use a cloud version for easier setup. The main benefit is that you get thorough, real-world security testing without the slow pace and high cost of manual checks, helping you catch and fix issues before they become serious problems. https://github.com/usestrix/strix

Crypto M - Crypto News

@CryptoM · Post #64620 · 04/09/2026, 11:35 AM

🚀 AINFT Transitions to B.AI Brand Focused on Agent Finance The official Twitter account of AINFT will transition to B.AI starting today. According to ChainCatcher, the B.AI brand aims to advance Agent Finance, which involves AI Agents autonomously managing funds, executing trades, and optimizing returns, thereby granting artificial intelligence true financial autonomy and accelerating the realization of Artificial General Intelligence (AGI). To ensure a smooth transition for the community, the brand will implement phased upgrades to avoid the impact of a one-time switch. During this process, AINFT will continue to operate as a core sub-brand within the B.AI ecosystem. All content, technological iterations, and community activities related to AINFT will be migrated to the new platform @AINFTcom. #B_AI#Agent_Finance#AI_Agents#Artificial_Intelligence#AGI#Technology_Transition#AINFT#Financial_Autonomy#Blockchain#Crypto

djangoproject

@djangoproject · Post #413 · 08/15/2017, 12:34 PM

http://codeinpython.com/tutorials/deep-learning-tensorflow-keras-pytorch/?nonamp=1 Deep Learning #Tensorflow vs #Keras vs #PyTorch #Deep_learning is the application of artificial #neural_networks (ANNs) to learn tasks. These tasks contain more than one hidden layer. Deep learning is part of a broader family of #machine_learning. Machine learning itself is a part of #Artificial_Intelligence(#AI).

GitHub Trends

@githubtrending · Post #15123 · 09/06/2025, 11:30 AM

#rust#artificial_intelligence#big_data#data_engineering#distributed_computing#machine_learning#multimodal#python#rust Daft is a powerful, easy-to-use data engine that lets you process large-scale data using Python or SQL with high speed and efficiency. It supports complex data types like images and tensors, works well interactively for quick data exploration, and can scale to huge cloud clusters using Ray. Daft integrates smoothly with cloud storage and data catalogs, making it ideal for data engineering, analytics, and machine learning workflows. By using Daft, you can handle big, multimodal datasets faster and more flexibly, improving your ability to analyze and prepare data for AI models without complex setup or slowdowns. https://github.com/Eventual-Inc/Daft

GitHub Trends

@githubtrending · Post #14926 · 07/08/2025, 11:30 AM

#jupyter_notebook#artificial_intelligence#book#large_language_models#llm#llms#oreilly#oreilly_books You can learn how to use Large Language Models (LLMs) effectively through the book *Hands-On Large Language Models* by Jay Alammar and Maarten Grootendorst. This book uses nearly 300 custom illustrations to explain key concepts and practical tools for working with LLMs, including tokenization, transformers, prompt engineering, fine-tuning, and advanced text generation. It also provides runnable code examples in Google Colab, making it easy to practice and apply what you learn. This resource helps you understand and build your own LLM applications confidently, saving you time and effort in mastering complex AI technology. It’s highly recommended for anyone wanting hands-on experience with LLMs. https://github.com/HandsOnLLM/Hands-On-Large-Language-Models

GitHub Trends

@githubtrending · Post #15545 · 03/07/2026, 12:30 PM

#elixir#agent#ai#artificial_intelligence#elixir#event_driven_architecture#functional_programming#orchestration#workflow Jido is a pure functional framework for Elixir to build autonomous multi-agent workflows. Agents are immutable data with a simple `cmd/2` function that transforms state purely and outputs directives for effects like signals or spawning, handled by OTP runtime. It formalizes patterns like standard signals, reusable actions, and hierarchies over raw GenServer, adding AI tools, strategies (ReAct, FSM), and supervision. You benefit by creating scalable, testable, fault-tolerant agent systems easily for production AI apps, saving reinvented code. https://github.com/agentjido/jido

djangoproject

@djangoproject · Post #350 · 06/23/2017, 07:07 AM

http://www.datapine.com/blog/technology-buzzwords/ 12 IT & Technology Buzzwords You Won’t Be Able To Avoid In 2017 #Virtual_Assistants #Artificial_Intelligence (#AI) #Augmented_Reality / #Virtual_Reality #Deep_Learning / #Advanced_Machine_Learning #Blockchain Everything On-Demand (The Uber Effect) Digital Twin Smart Factory / Industry 4.0 Actionable Analytics / Self-service analytics Internet of Things / Device Mash / Ambient UX React JS / React Native Quantum Computing

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